{
 "cells": [
  {
   "cell_type": "code",
   "execution_count": 1,
   "id": "9a77c2ec",
   "metadata": {},
   "outputs": [],
   "source": [
    "# pip install pyhealth"
   ]
  },
  {
   "cell_type": "markdown",
   "id": "53feb87e",
   "metadata": {},
   "source": [
    "### STEP 1: load the chest Xray data"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 2,
   "id": "13913032",
   "metadata": {},
   "outputs": [
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "/home/chaoqiy2/miniconda3/envs/moltext/lib/python3.7/site-packages/tqdm/auto.py:21: TqdmWarning: IProgress not found. Please update jupyter and ipywidgets. See https://ipywidgets.readthedocs.io/en/stable/user_install.html\n",
      "  from .autonotebook import tqdm as notebook_tqdm\n"
     ]
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "Statistics of COVID19CXRDataset:\n",
      "Number of samples: 21165\n",
      "Number of classes: 4\n",
      "Class distribution: Counter({'Normal': 10192, 'Lung Opacity': 6012, 'COVID': 3616, 'Viral Pneumonia': 1345})\n"
     ]
    }
   ],
   "source": [
    "from pyhealth.datasets import COVID19CXRDataset\n",
    "\n",
    "root = \"/srv/local/data/COVID-19_Radiography_Dataset\"\n",
    "base_dataset = COVID19CXRDataset(root, refresh_cache=False)\n",
    "\n",
    "base_dataset.stat()"
   ]
  },
  {
   "cell_type": "markdown",
   "id": "048ff2ee",
   "metadata": {},
   "source": [
    "### STEP 2: set task and processing the data"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 3,
   "id": "9487b2c6",
   "metadata": {},
   "outputs": [
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "Generating samples for COVID19CXRClassification: 100%|███████████████████████████████████████████| 21165/21165 [00:00<00:00, 2783009.72it/s]\n"
     ]
    }
   ],
   "source": [
    "from torchvision import transforms\n",
    "\n",
    "sample_dataset = base_dataset.set_task()\n",
    "\n",
    "# the transformation automatically normalize the pixel intensity into [0, 1]\n",
    "transform = transforms.Compose([\n",
    "    transforms.Lambda(lambda x: x if x.shape[0] == 3 else x.repeat(3, 1, 1)), # only use the first channel\n",
    "    transforms.Resize((128, 128)),\n",
    "])\n",
    "\n",
    "def encode(sample):\n",
    "    sample[\"path\"] = transform(sample[\"path\"])\n",
    "    return sample\n",
    "\n",
    "sample_dataset.set_transform(encode)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 4,
   "id": "1601d7d1",
   "metadata": {},
   "outputs": [],
   "source": [
    "from pyhealth.datasets import split_by_visit, get_dataloader\n",
    "\n",
    "# split dataset\n",
    "train_dataset, val_dataset, test_dataset = split_by_visit(\n",
    "    sample_dataset, [0.8, 0.1, 0.1]\n",
    ")\n",
    "train_dataloader = get_dataloader(train_dataset, batch_size=256, shuffle=True)\n",
    "val_dataloader = get_dataloader(val_dataset, batch_size=256, shuffle=False)\n",
    "test_dataloader = get_dataloader(test_dataset, batch_size=256, shuffle=False)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 5,
   "id": "d4d8b012",
   "metadata": {},
   "outputs": [
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "torch.Size([3, 128, 128])\n",
      "loader size: train/val/test 16932 2116 2117\n"
     ]
    }
   ],
   "source": [
    "data = next(iter(train_dataloader))\n",
    "print (data[\"path\"][0].shape)\n",
    "\n",
    "print(\n",
    "    \"loader size: train/val/test\",\n",
    "    len(train_dataset),\n",
    "    len(val_dataset),\n",
    "    len(test_dataset),\n",
    ")"
   ]
  },
  {
   "cell_type": "markdown",
   "id": "a897d167",
   "metadata": {},
   "source": [
    "### STEP3: define the GAN model"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 18,
   "id": "b93a449c",
   "metadata": {},
   "outputs": [],
   "source": [
    "from pyhealth.models import GAN\n",
    "\n",
    "model = GAN(\n",
    "    input_channel=3,\n",
    "    input_size=128,\n",
    "    hidden_dim = 256,\n",
    ")"
   ]
  },
  {
   "cell_type": "markdown",
   "id": "e6155755",
   "metadata": {},
   "source": [
    "### STEP4: training the GAN model in an adversarial way"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 24,
   "id": "a06f823a",
   "metadata": {},
   "outputs": [
    {
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     ]
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "epoch: 0 --- loss of G: 235.46342170238495, loss of D: 38.44307478144765\n"
     ]
    },
    {
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     "output_type": "stream",
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     ]
    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "epoch: 1 --- loss of G: 189.38715118169785, loss of D: 30.993362290784717\n"
     ]
    },
    {
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    },
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     "text": [
      "epoch: 2 --- loss of G: 239.08964610099792, loss of D: 6.970357734709978\n"
     ]
    },
    {
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    {
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     "text": [
      "epoch: 3 --- loss of G: 282.8131763935089, loss of D: 4.137967556715012\n"
     ]
    },
    {
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    },
    {
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     "text": [
      "epoch: 4 --- loss of G: 255.01798963546753, loss of D: 5.110567823052406\n"
     ]
    },
    {
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    },
    {
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     "text": [
      "epoch: 5 --- loss of G: 304.87264013290405, loss of D: 8.64646109007299\n"
     ]
    },
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      "epoch: 6 --- loss of G: 500.5840277671814, loss of D: 24.204148830845952\n"
     ]
    },
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      "epoch: 7 --- loss of G: 451.33461332321167, loss of D: 0.7537129627307877\n"
     ]
    },
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      "epoch: 8 --- loss of G: 431.7444968223572, loss of D: 6.4659804629627615\n"
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      "epoch: 9 --- loss of G: 596.1160368919373, loss of D: 7.6383128159234275\n"
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      "epoch: 10 --- loss of G: 484.0970947742462, loss of D: 15.179329166712705\n"
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      "epoch: 11 --- loss of G: 407.63574838638306, loss of D: 0.530137675232254\n"
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      "epoch: 12 --- loss of G: 312.33895611763, loss of D: 3.4384627752006054\n"
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      "epoch: 31 --- loss of G: 202.9431939125061, loss of D: 25.77581850066781\n"
     ]
    },
    {
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      "epoch: 32 --- loss of G: 324.6885280609131, loss of D: 36.55593832582235\n"
     ]
    },
    {
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      "epoch: 33 --- loss of G: 221.39485549926758, loss of D: 11.331106215715408\n"
     ]
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      "epoch: 34 --- loss of G: 147.92780953645706, loss of D: 38.99323396384716\n"
     ]
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      "epoch: 35 --- loss of G: 192.14132618904114, loss of D: 28.10118254646659\n"
     ]
    },
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      "epoch: 36 --- loss of G: 235.25207090377808, loss of D: 31.65054650232196\n"
     ]
    },
    {
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      "epoch: 37 --- loss of G: 157.7527117729187, loss of D: 31.56289905309677\n"
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      "epoch: 38 --- loss of G: 203.90822780132294, loss of D: 24.688751220703125\n"
     ]
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      "epoch: 39 --- loss of G: 193.7863022685051, loss of D: 27.719643944874406\n"
     ]
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      "epoch: 40 --- loss of G: 148.90731024742126, loss of D: 24.35784476995468\n"
     ]
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    {
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      "epoch: 41 --- loss of G: 138.36136281490326, loss of D: 32.37918431684375\n"
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      "epoch: 42 --- loss of G: 144.17725467681885, loss of D: 24.131414487957954\n"
     ]
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    {
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      "epoch: 43 --- loss of G: 137.79231882095337, loss of D: 28.492403000593185\n"
     ]
    },
    {
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      "epoch: 44 --- loss of G: 130.22422045469284, loss of D: 29.230164095759392\n"
     ]
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      "epoch: 45 --- loss of G: 178.59211683273315, loss of D: 18.080337017774582\n"
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      "epoch: 46 --- loss of G: 208.3746610879898, loss of D: 37.55503672361374\n"
     ]
    },
    {
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     "output_type": "stream",
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      "epoch: 47 --- loss of G: 149.65763175487518, loss of D: 29.568245857954025\n"
     ]
    },
    {
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     "output_type": "stream",
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     "text": [
      "epoch: 48 --- loss of G: 229.93753325939178, loss of D: 25.85401887446642\n"
     ]
    },
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
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    },
    {
     "name": "stdout",
     "output_type": "stream",
     "text": [
      "epoch: 49 --- loss of G: 215.52084922790527, loss of D: 15.89515457302332\n"
     ]
    },
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "\n"
     ]
    }
   ],
   "source": [
    "import torch\n",
    "from tqdm import tqdm\n",
    "\n",
    "# Loss function\n",
    "loss = torch.nn.BCELoss()\n",
    "opt_G = torch.optim.AdamW(model.generator.parameters(), lr=1e-3)\n",
    "opt_D = torch.optim.AdamW(model.discriminator.parameters(), lr=1e-4)\n",
    "\n",
    "device = \"cuda:4\"\n",
    "model.to(device)\n",
    "\n",
    "curve_D, curve_G = [], []\n",
    "\n",
    "for epoch in range(50):\n",
    "    curve_G.append(0)\n",
    "    curve_D.append(0)\n",
    "    for batch in tqdm(train_dataloader):\n",
    "        \n",
    "        \"\"\" train discriminator \"\"\"\n",
    "        opt_D.zero_grad()\n",
    "\n",
    "        real_imgs = torch.stack(batch[\"path\"], dim=0).to(device)\n",
    "        batch_size = real_imgs.shape[0]\n",
    "        fake_imgs = model.generate_fake(batch_size, device)\n",
    "        \n",
    "        real_loss = loss(model.discriminator(real_imgs), torch.ones(batch_size, 1).to(device))\n",
    "        fake_loss = loss(model.discriminator(fake_imgs.detach()), torch.zeros(batch_size, 1).to(device))\n",
    "        loss_D = (real_loss + fake_loss) / 2\n",
    "\n",
    "        loss_D.backward()\n",
    "        opt_D.step()\n",
    "        \n",
    "        \"\"\" train generator \"\"\"\n",
    "        opt_G.zero_grad()\n",
    "        loss_G = loss(model.discriminator(fake_imgs), torch.ones(batch_size, 1).to(device))\n",
    "\n",
    "        loss_G.backward()\n",
    "        opt_G.step()\n",
    "        \n",
    "        curve_G[-1] += loss_G.item()\n",
    "        curve_D[-1] += loss_D.item()\n",
    "\n",
    "    print (f\"epoch: {epoch} --- loss of G: {curve_G[-1]}, loss of D: {curve_D[-1]}\")"
   ]
  },
  {
   "cell_type": "markdown",
   "id": "dd1b7851",
   "metadata": {},
   "source": [
    "### EXP 2: synthesize random images"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 31,
   "id": "e544672a",
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/png": 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\n",
      "text/plain": [
       "<Figure size 640x480 with 1 Axes>"
      ]
     },
     "metadata": {},
     "output_type": "display_data"
    }
   ],
   "source": [
    "import torch\n",
    "import numpy as np\n",
    "import matplotlib.pyplot as plt\n",
    "\n",
    "model.eval()\n",
    "with torch.no_grad():\n",
    "    fake_imgs = model.generate_fake(1, device).detach().cpu()\n",
    "    plt.imshow(fake_imgs[0][0], cmap=\"gray\")\n",
    "    plt.show()"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "id": "267e356d",
   "metadata": {},
   "outputs": [],
   "source": []
  }
 ],
 "metadata": {
  "kernelspec": {
   "display_name": "Python 3",
   "language": "python",
   "name": "python3"
  },
  "language_info": {
   "codemirror_mode": {
    "name": "ipython",
    "version": 3
   },
   "file_extension": ".py",
   "mimetype": "text/x-python",
   "name": "python",
   "nbconvert_exporter": "python",
   "pygments_lexer": "ipython3",
   "version": "3.7.16"
  }
 },
 "nbformat": 4,
 "nbformat_minor": 5
}
